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Jointly Learning Non-negative Projection and Dictionary with Discriminative Graph Constraints for Classification

14 November 2015
Weiyang Liu
Zhiding Yu
Yandong Wen
Rongmei Lin
ArXiv (abs)PDFHTML
Abstract

Dictionary learning (DL) for sparse coding has shown impressive performance in classification tasks. But how to select a feature that can best work with the learned dictionary remains an open question. Current prevailing DL methods usually adopt existing well-performing features, ignoring the inner relationship between dictionaries and features. To address the problem, we propose a joint non-negative projection and dictionary learning (JNPDL) method. Non-negative projection learning and dictionary learning are complementary to each other, since the former leads to the intrinsic discriminative parts-based features for objects while the latter searches a suitable representation in the projected feature space. Specifically, discrimination of projection and dictionary is achieved by imposing to both projection and coding coefficients a graph constraint that maximizes the intra-class compactness and inter-class separability. Experimental results on both image classification and image set classification show the excellent performance of JNPDL by being comparable or outperforming many state-of-the-art approaches.

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